Efficient Prior Calibration From Indirect Data
O. Deniz Akyildiz, Mark Girolami, Andrew M. Stuart, Arnaud Vadeboncoeur

TL;DR
This paper introduces a method for efficiently learning prior models in Bayesian inverse problems from indirect data using neural operators and bilevel optimization, demonstrated on Darcy flow applications.
Contribution
It proposes a novel approach combining neural operators and generative models to learn priors from indirect data efficiently, with concurrent training of forward models and priors.
Findings
Neural operator-based residual approximation accelerates computations.
The method effectively learns priors from noisy, indirect data.
Application to Darcy flow demonstrates practical utility.
Abstract
Bayesian inversion is central to the quantification of uncertainty within problems arising from numerous applications in science and engineering. To formulate the approach, four ingredients are required: a forward model mapping the unknown parameter to an element of a solution space, often the solution space for a differential equation; an observation operator mapping an element of the solution space to the data space; a noise model describing how noise pollutes the observations; and a prior model describing knowledge about the unknown parameter before the data is acquired. This paper is concerned with learning the prior model from data; in particular, learning the prior from multiple realizations of indirect data obtained through the noisy observation process. The prior is represented, using a generative model, as the pushforward of a Gaussian in a latent space; the pushforward map is…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks
